Robust process model identification in model based control techniques
A robust method of creating process models for use in controller generation, such as in MPC controller generation, adds noise to the process data collected and used in the model generation process. In particular, a robust method of creating a parametric process model first collects process outputs based on known test input signals or sequences, adds random noise to the collected process data and then uses a standard or known technique to determine a process model from the collected process data. Unlike existing techniques for noise removal that focus on clean up of non-random noise prior to generating a process model, the addition of random, zero-mean noise to the process data enables, in many cases, the generation of an acceptable parametric process model in situations where no process model parameter convergence was otherwise obtained. Additionally, process models created using this technique generally have wider confidence intervals, therefore providing a model that works adequately in many process situations without needing to manually or graphically change the model.
Latest FISHER-ROSEMOUNT SYSTEMS, INC. Patents:
- System and method for providing a visualization of safety events of a process control system over time
- Whitelisting for HART communications in a process control system
- Systems and methods for embedding a web frame with preconfigured restrictions in a graphical display view of a process plant
- Multi-protocol field device in process control systems
- Software defined process control system and methods for industrial process plants
The present disclosure relates generally to process control systems and, more particularly, to the development of process models for use in advanced control routines, such as model predictive and neural network control routines used in process control systems.
DESCRIPTION OF THE RELATED ARTProcess control systems, such as distributed or scalable process control systems like those used in chemical, petroleum or other processes, typically include one or more process controllers communicatively coupled each other, to at least one host or operator workstation and to one or more field devices via analog, digital or combined analog/digital buses. The field devices, which may be, for example valves, valve positioners, switches and transmitters (e.g., temperature, pressure and flow rate sensors), perform functions within the process such as opening or closing valves and measuring process parameters. The process controller receives signals indicative of process measurements made by the field devices and/or other of information pertaining to the field devices, uses this information to implement a control routine and then generates control signals which are sent over the buses to the field devices to control the operation of the process. Information from the field devices and the controller is typically made available to one or more applications executed by the operator workstation to enable an operator to perform any desired function with respect to the process, such as viewing the current state of the process, modifying the operation of the process, etc.
In the past, conventional field devices were used to send and receive analog (e.g., 4 to 20 milliamp) signals to and from the process controller via an analog bus or analog lines. These 4 to 20 ma signals were limited in nature in that they were indicative of measurements made by the device or of control signals generated by the controller required to control the operation of the device. However, more recently, smart field devices including a microprocessor and a memory have become prevalent in the process control industry. In addition to performing a primary function within the process, smart field devices store data pertaining to the device, communicate with the controller and/or other devices in a digital or combined digital and analog format, and perform secondary tasks such as self-calibration, identification, diagnostics, etc. A number of standard and open smart device communication protocols such as the HART®, PROFIBUS®, WORLDFIP®, Device-Net®, and CAN protocols, have been developed to enable smart field devices made by different manufacturers to be used together within the same process control network.
Moreover, there has been a move within the process control industry to decentralize process control functions. For example, the all-digital, two-wire bus protocol promulgated by the Fieldbus Foundation, known as the FOUNDATION™ Fieldbus (hereinafter “Fieldbus”) protocol uses function blocks located in different field devices to perform control operations previously performed within a centralized controller. In particular, each Fieldbus field device is capable of including and executing one or more function blocks, each of which receives inputs from and/or provides outputs to other function blocks (either within the same device or within different devices), and performs some process control operation, such as measuring or detecting a process parameter, controlling a device or performing a control operation, like implementing a proportional-derivative-integral (PID) control routine. The different function blocks within a process control system are configured to communicate with each other (e.g., over a bus) to form one or more process control loops, the individual operations of which are spread throughout the process and are, thus, decentralized.
Process controllers are typically programmed to execute a different algorithm, sub-routine or control loop (which are all control routines) for each of a number of different loops defined for, or contained within a process, such as flow control loops, temperature control loops, pressure control loops, etc. Generally speaking, each such control loop includes one or more input blocks, such as an analog input (AI) function block, a single-output control block, such as a proportional-integral-derivative (PID) or a fuzzy logic control function block, and a single output block, such as an analog output (AO) function block. These control loops typically perform single-input-single-output control because the control block creates a single output used to control a single process input, such as a valve position, etc. However, in certain cases, the use of a number of independently operating, single-input-single-output control loops is not very effective because the process variables being controlled are effected by more than a single process input and, in fact, each process input may effect the state of many process outputs. In these cases, the use of single-input-single-output control loops may cause the process outputs to oscillate without ever reaching a steady state condition, which is undesirable.
Model predictive control or other types of advanced control have been used in the past to perform control in these types of situations. Generally speaking, model predictive control is a multiple-input-multiple output control strategy in which the effects of changing each of a number of process inputs on each of a number of process outputs is measured and these measured responses are then used to create a model of the process. The model of the process is inverted mathematically and is then used within a multiple-input-multiple-output controller to control the process outputs based on changes made to the process inputs. In some cases, the process model includes or is developed from a process output response curve for each of the process inputs and these curves may be created based on a series of, for example, pseudo-random step changes delivered to each of the process inputs. These response curves can be used to model the process in known manners. Model predictive control is known in the art and, as a result, the specifics thereof will not be described herein. However, model predictive control is described generally in Qin, S. Joe and Thomas A. Badgwell, “An Overview of Industrial Model Predictive Control Technology,” AIChE Conference, 1996.
Moreover, the generation and use of advanced control routines such as MPC control routines has been integrated into the configuration process for a controller for a process plant. For example, Wojsznis et al., U.S. Pat. No. 6,445,963 entitled “Integrated Advanced Control Blocks in Process Control Systems,” the disclosure of which is hereby expressly incorporated by reference herein, discloses a method of generating an advanced control block such as an advanced controller (e.g., an MPC controller or a neural network controller) using data collected from the process plant when configuring the process plant. More particularly, U.S. Pat. No. 6,445,963 discloses a configuration system that creates an advanced multiple-input-multiple-output control block within a process control system in a manner that is integrated with the creation of and downloading of other control blocks using a particular control paradigm, such as the Fieldbus paradigm. In this case, the advanced control block is initiated by creating a control block having desired inputs and outputs to be connected to process outputs and inputs, respectively, for controlling a process. The control block includes a data collection routine and a waveform generator associated therewith and may have control logic that is untuned or otherwise undeveloped because this logic is missing tuning parameters, matrix coefficients or other control parameters necessary to be implemented. The control block is placed within the process control system with the defined inputs and outputs communicatively coupled within the control system in the manner that these inputs and outputs would be connected if the advanced control block was being used to control the process. Next, during a test procedure, the control block systematically upsets each of the process inputs via the control block outputs using waveforms generated by the waveform generator specifically designed for use in developing a process model. Then, via the control block inputs, the control block coordinates the collection of data pertaining to the response of each of the process outputs to each of the generated waveforms delivered to each of the process inputs. This data may, for example, be sent to a data historian to be stored. After sufficient data has been collected for each of the process input/output pairs, a process modeling procedure is run in which one or more process models are generated from the collected data using, for example, any known or desired model generation routine. As part of this model determination routine, a model parameter determination routine develops the model parameters, e.g., matrix coefficients, dead time, gain, time constants, etc. needed by the control logic to be used to control the process. The control logic parameters and, if needed, the process model, are then downloaded to the control block to complete formation of the advanced control block so that the advanced control block, with the model parameters and/or the process model therein, can be used to control the process.
While this technique of generating and downloading a process controller within a process plant is useful, it relies heavily on the ability of the model creation software to be able to create or generate a process model from the data collected from the process plant during the test phase. In fact, developing a process model is the most important stage of, for example, an MPC controller implementation and, for the most part, the quality of the model defines the success of the application. Thus, the process of creating and validating the process models generated for use in the advanced control block is highly important.
Generally speaking, process model creation software may generate different types of models, including non-parametric models, such as finite impulse response (FIR) models, and parametric models, such as auto-regressive with external inputs (ARX) models. While the FIR model creation routine is generally able to produce an FIR model, FIR models generally have disadvantages in MPC controllers due to size of the memory needed to define the model and the number of computations needed for the model development. While ARX and other parametric models require less memory for defining models and less computations, there are many situations in which the parametric model creation software is unable to generate a parametric process model at all because this software is unable to converge on a solution for the model parameters. In particular, model generation techniques that rely on regressive algorithms, such as least squares, are known to have problems converging to a solution. In this case, the identified model parameters may be mathematically accurate, but are not representative of the true parameters. Because ARX and other parametric models typically do not generate an accurate estimate of the dead time of the process, they are more prone to such problems, which results in an inability to generate a model or results in a model whose parameters are numerically invalid.
In either case, the inability of the model creation software to produce a parametric model creates a problem, as the control designer must then take manual steps in an attempt to determine an adequate or appropriate parametric model to use. In the past, for example, in an attempt to enable the parametric model creation software to converge on a set of model parameters, users have added more data to the process data used to create the model, have attempted to specify various parameters, such as the dead time or one or more time constants to a greater degree, or have changed step magnitudes in the process upset signals used to create the process data. Unfortunately, none of these steps work all that well or very consistently in enabling model parameters of a parametric model to converge. Moreover, taking manual steps to alter the model creation environment requires that the control designer has the appropriate knowledge and experience of the process being controlled, as well as the appropriate analysis tools to determine an appropriate model. In many situations one or both of these elements are missing, leading the control designer to select a different type of controller format.
When a model is actually created from the data, process model review and validation may be performed to check the exactness of process model and to provide a good indication about the required robustness of the controller. For example, if the model demonstrates a significant mismatch with the process, the controller should be more robust. A typical model identification procedure involves performing a qualitative validation of the model predictions, verifying and editing the model parameters, performing a statistical model validation, and performing a model simulation. In particular, during the qualitative validation of model prediction step, simulation software applies real process input data as process model inputs and plots the actual output of the process against the predicted output for a known data set.
During the verification step, a user performs visual, e.g., graphical, inspection of the individual step response(s) for the process model(s), based on knowledge of the process, to verify that these step responses are in the expected range. Known tools that enable a user to perform numerical and graphical step response design and editing allow the user to correct the model based on (1) process knowledge, (2) information gathered by observing measurement trends and simulations, and (3) the obtained process model.
Next during a statistical model validation phase, model uncertainty is quantified using statistical techniques. These statistical techniques may include computing validation errors between actual and predicted outputs, such as root mean square (RMS), etc. For the unsatisfactory models, the average squared error is fairly high (e.g., 2.4 percent per scan). A rule of thumb may be that if the average output error exceeds one percent per scan, the associated step responses should be examined in more detail. Another statistical technique that can be used is a correlation analysis of validation errors or residuals, which explores the auto-correlation of residuals and/or the cross-correlation between residuals and the process inputs. Moreover, frequency transfer functions of process model and residuals can be computed and uncertainty bounds in frequency domain may be used to indicate quality of the model over considered frequency range.
One useful manner of defining model quality based on the developed model parameters uses the concept of model confidence intervals, which indicate a range of a specific model parameter values within a predefined probability, usually 95%. That is, confidence intervals define the range of the model parameter values in which it is predicted that the parameter values will fall within according to the predefined probability. Confidence intervals provide very important implicit information about the model identification, in that wider confidence intervals imply a less accurate model. It is commonly accepted therefore that narrow confidence intervals are more desirable. On the other hand, wider confidence intervals imply better convergence of the model parameters which is desirable when, for example, the model order does not match the process complexity or a linear model is used for modeling processes with the significant non-linearity. However, while confidence intervals help a user verify a model, they do not assist in changing the model to make the model better or more accurate.
Finally, after graphically viewing and possibly editing the process model and the process model responses, an MPC simulation using the process model provides the user with an idea of process-process model mismatch. In addition, simulation provides ‘what-if’ analysis prior to controller commissioning.
While these techniques are routinely employed in MPC model check out, they have inherent drawbacks. In particular, both visual observations of prediction quality and computed validation errors (RMS values, residuals, etc.) only indicate that the output prediction may be suspect. Moreover, simulation error indicating model mismatch does not provide information that can be used to improve the model. Likewise, numerical and graphical step response design and editing tools prove their utility only in the presence of expert process knowledge. Thus, while step responses can be inspected for validating gain parameters, other important information such as dynamics, gain magnitude, and time constants, which have a strong influence on the resulting controller, may not be apparent to the user. One common source of inaccuracy, for example, is the process dead time, a parameter that, in general, is not accurately known to the user and therefore cannot be accounted for easily in the model design and editing process.
Still further, noisy data, insufficient process excitation, and too short of a test time for data collection have been identified as problems that may produce a model that is not satisfactory for control purposes. None-the-less, plant conditions may not allow for a better test. Still further, statistical evaluations such as auto and cross-correlation, though useful in providing quantitative model information, have the same problem, namely non-specific information.
Consequently, in spite of the knowledge of model inaccuracy, it is difficult to determine or implement corrective action. Often, this fact requires re-identification of the model using another or a different set of data, even though only a small part of the model may be the cause of mismatch. To compound matters, the model mismatch information that can be determined is not actually reflected in the controller generation process. True model quality, therefore, is known only after the controller has been commissioned and its performance has been measured, which results in significant losses in time, money and resources, and is a disincentive for plant personnel to employ MPC technology.
In this respect, expressing confidence intervals in the time domain is a promising technique to apply as it gives model quality specifics in the form of concrete parameters for individual step responses. This technique also results in re-identification and/or correction of only a specific part of the model. Equally important, knowledge of the errors of specific parameters facilitates the selection of MPC controller generation settings that will result in a robust controller. Also, presentation in the time domain removes the complexity of using such a quality variable. However, while using confidence intervals in the time domain is useful in evaluating a process model that has been created, it is still desirable to provide a robust method of creating a process model in the first place, that can be used in controller generation, such as in MPC controller generation, in spite of tests with insufficient excitation, short data collection time frames, model constraints, such as model and process complexity mismatch (e.g., the model order does not match the process complexity or a linear model is used for modeling processes with the significant non-linearity), etc.
SUMMARYIt has been surprisingly discovered that a robust method of creating process models for use in controller generation, such as in MPC controller generation, and in particular in creating parametric process models, is obtained if noise is actually added to the process data which is collected from the process and used in the model generation process. In particular, a robust method of creating a process model, such as a parametric process model, collects process outputs based on known test input signals or sequences, adds noise, such as random noise, to the collected process data and then uses a standard or known technique to determine a process model from the collected process data. In fact, contrary to past techniques which have tried to clean up or remove noise from the process data prior to generating a process model, it has been found that adding noise to the process data enables, in many cases, the generation of an acceptable process model in situations where no acceptable process model of the same type could be generated without the addition of the noise. Additionally, it has been found that process models created using this technique generally have wider confidence intervals, therefore providing a model that fists adequately within extended confidence intervals that account for many process complexities without needing to manually or graphically change the model creation environment.
In one use of this technique, an advanced control block generation routine generates a multiple-input-multiple-output block, such as model predictive controller, a neural network modeling or control block, etc., within a process control system using a robust process model creation routine. The advanced control block may be initiated by creating a control block having desired inputs and outputs to be connected to process outputs and inputs, respectively, for controlling a process. The control block may be intended to ultimately include, for example, a complete model predictive controller, but initially has a data collection routine and a waveform generator associated therewith. If desired, the control block may have control logic that is untuned or otherwise undeveloped because this logic is missing tuning parameters, matrix coefficients or other model parameters necessary to implement the controller. The control block is placed within the process control system with the defined inputs and outputs communicatively coupled within the control system in the manner that these inputs and outputs would be connected if the advanced control block was being used to control the process. During a test procedure, the control block systematically upsets each of the process inputs via the control block outputs using waveforms generated by the waveform generator specifically designed for use in developing a process model. The control block coordinates the collection of data pertaining to the response of each of the process outputs to each of the generated waveforms delivered to each of the process inputs. This data may, for example, be sent to a data historian to be stored.
After sufficient data has been collected, a process modeling procedure is run in which noise is added to the collected process output data. This noise may be, for example, zero-mean, evenly distributed noise having a maximum amplitude from about 0.20 to about 0.5 percent of the range of the magnitude of the process output data and may more preferably be zero-mean, evenly distributed noise having a maximum amplitude of about 0.4 percent of the range of the magnitude of the process output data. A process model such as a parametric process model is then generated from the collected (and noisy) data using, for example, a model predictive controller process model generation routine such as an ARX model generation routine. Thereafter, an control block logic creates or develops the parameters needed by the control logic to be used to control the process. If desired, the created process model may be validated and the validation results may be displayed to the user in the form of a confidence plot, illustrating one or more confidence regions for the model. If desired, the confidence plots may be time domain based confidence plots, which enable the user to determine where the model is failing to match the process response, and to make changes to that part of the model if necessary.
After testing or viewing the resultant process model, the control logic parameters and the process model are then downloaded to the control block to complete formation of the advanced control block so that the advanced control block, with the advanced control logic parameters and process model therein, can be used to control the process.
BRIEF DESCRIPTION OF THE DRAWINGS
Referring now to
The field devices 15-22 may be any types of devices, such as sensors, valves, transmitters, positioners, etc. while the I/O cards 26 and 28 may be any types of I/O devices conforming to any desired communication or controller protocol. In the embodiment illustrated in
The controller 11 implements or oversees one or more process control routines, which may include control loops, stored therein or otherwise associated therewith and communicates with the devices 15-22, the host computers 13 and the data historian 12 to control a process in any desired manner. It should be noted that any control routines or elements described herein may have parts thereof implemented or executed by different controllers or other devices if so desired. Likewise, the control routines or elements described herein to be implemented within the process control system 10 may take any form, including software, firmware, hardware, etc. For the purpose of this invention, a process control element can be any part or portion of a process control system including, for example, a routine, a block or a module stored on any computer readable medium. Control routines, which may be modules or any part of a control procedure such as a subroutine, parts of a subroutine (such as lines of code), etc. may be implemented in any desired software format, such as using ladder logic, sequential function charts, function block diagrams, or any other software programming language or design paradigm. Likewise, the control routines may be hard-coded into, for example, one or more EPROMs, EEPROMs, application specific integrated circuits (ASICs), or any other hardware or firmware elements. Still further, the control routines may be designed using any design tools, including graphical design tools or any other type of software/hardware/firmware programming or design tools. Thus, the controller 11 may be configured to implement a control strategy or control routine in any desired manner.
In one embodiment, the controller 11 implements a control strategy using what are commonly referred to as function blocks, wherein each function block is a part (e.g., a subroutine) of an overall control routine and operates in conjunction with other function blocks (via communications called links) to implement process control loops within the process control system 10. Function blocks typically perform one of an input function, such as that associated with a transmitter, a sensor or other process parameter measurement device, a control function, such as that associated with a control routine that performs PID, fuzzy logic, etc. control, or an output function which controls the operation of some device, such as a valve, to perform some physical function within the process control system 10. Of course hybrid and other types of function blocks exist. Function blocks may be stored in and executed by the controller 11, which is typically the case when these function blocks are used for, or are associated with standard 4-20 ma devices and some types of smart field devices such as HART devices, or may be stored in and implemented by the field devices themselves, which can be the case with Fieldbus devices. While the description of the control system is provided herein using a function block control strategy, the control strategy or control loops or modules could also be implemented or designed using other conventions, such as ladder logic, sequential function charts, etc. or using any other desired programming language or paradigm.
As illustrated by the exploded block 30 of
As illustrated in
Referring now to
At some initial time (block 52), a decision is made to improve or provide control within the process control system 10 by implementing an MPC procedure. This decision may be made at the time the process control system 10 is first set up or at some later time after, for example, other control routines, such as single-loop control routines, have been found to provide inadequate control. At the block 52, an operator or other user executes the MPC block generation routine 40 to begin the steps of creating an MPC module or control loop within the process control system. As part of this process, the operator chooses the process inputs to which the outputs of the MPC block being designed are to be connected and chooses the process outputs to which the inputs of the MPC block being designed are to be connected. While the MPC block may have any number of inputs and outputs, each MPC block generally has three kinds of inputs including controlled parameter inputs which are the process variables or parameters that are to be maintained at a set point (or within a set range), constrained inputs which are the process variables that are constrained to a particular limit or range based on, for example, physical limitations associated with the process and which the MPC block must not force to be outside of the constrained range or limit, and process disturbance parameter inputs, which are other process variables, such as process inputs that, when altered, are known to cause changes to the controlled parameters. The MPC block uses the process disturbance parameter inputs to foresee changes to the controlled parameters (i.e., the controlled process outputs) and to limit the effects of these changes before they occur. Other inputs may also be provided to the MPC block, such as feedback from a device or other process element being controlled which enables the MPC control block to provide more effective control of these elements. Similarly, the outputs of the MPC block may be connected to control any desired process variable or other process input including control loop inputs, device control inputs, etc. The routine developed by connecting the MPC block to other control elements is referred to herein as an MPC module. While the user may create an MPC function block, the user may also obtain an initial function block from a memory, such as a library of function blocks, and use this function block or create an instance of this function block for use in the process control system. Likewise, a user or other provider may provide a function block or other control element in any other desired manner.
At a block 54, the operator creates an MPC module having an MPC block (which does not yet have all of the information needed to provide model predictive control) with the specified inputs and outputs communicatively connected within the process control system and downloads the block or module to the appropriate controller or other device that will implement the MPC module. As part of this process, the operator configures the process control system 10 to implement the MPC block by communicatively coupling the outputs of the MPC block to the appropriate process inputs and by communicatively coupling the inputs of the MPC block to the appropriate process outputs.
Referring to
Of course, the operator can connect the MPC block 56 to the process 58 in any desired manner and, generally speaking, will use the same control configuration or design program that the operator uses to create other control loops like single-loop control routines within the process control system 10. For example, the operator may use any desired graphical programming routine to specify the connections between the MPC block 56 and the process inputs and outputs. In this manner, the MPC block 56 is supported in the same way as other control blocks, elements or routines, which makes configuration and connection of the MPC block 56 and support of that block within the control system 10 no different than the configuration, connection and support of the other blocks within the system. In one embodiment, the MPC block 56, as well as the other blocks within the control system 10, are function blocks designed to be the same as or similar to Fieldbus function blocks. In this embodiment, the MPC block 56 may have the same or similar types of inputs, outputs, etc. as specified or provided in the Fieldbus protocol and is capable of being implemented by, for example, the controller 11 using communication links which are the same as or similar to those specified by the Fieldbus protocol. A method of graphically creating process control routines and elements thereof is described in Dove et al., U.S. Pat. No. 5,838,563 entitled “System for Configuring a Process Control Environment” which is hereby expressly incorporated by reference herein. Of course, other control loop or control module design strategies could be used as well, including those which use other types of function blocks or which use other routines, sub-routines or control elements within a process control configuration paradigm.
When using a control system based on the interconnection of function blocks, such as those provided by the Fieldbus function block paradigm, the MPC block 56 can be connected directly to other function blocks within the process control routine. For example, the MPC block 56 may be connected to control devices, such as valves, etc. directly by connecting a control output of the MPC block 56 to an output block (such as an AO block) associated with the device being controlled. Likewise, the MPC block 56 may provide control signals to function blocks within other control loops, such as to the input of other control function blocks, to oversee or override the operation of these control loops.
As will be understood, and as described in more detail in U.S. Pat. No. 6,445,963, the process inputs X1-X3 to which the outputs of the MPC control block 56 are connected in
Referring again to the step 54 of
As illustrated in
Thus, instead of trying to control the process 58 using some advanced control logic (which has not yet been completely developed), the MPC block 56 first provides a set of excitation waveforms to the process 58 and measures the response of the process 58 to these excitation waveforms. Of course, the excitation waveforms generated by the waveform generator 101 may be any desired waveforms developed to create a process model useful for the creation control logic parameters for any model based control routine. In this example, the waveform generator 101 generates any set of waveforms that is known to be useful in developing a process model for a model predictive controller, and these waveforms may take any form now known or developed in the future for this purpose. Because waveforms used to excite a process for the purpose of collecting data to develop a process model for model predictive control are well known, these waveforms will not be described further herein. Likewise, any other or any desired types of waveforms may be generated by the waveform generator 101 for use in developing process models for other advanced control applications (which includes modeling), such as neural networks, multi-variable fuzzy logic, etc.
It should be noted that the waveform generator 101 may take any desired form and may, for example, be implemented in hardware, software or a combination of both. If implemented in software, the waveform generator 101 may store an algorithm that can be used to generate the desired waveforms, may store digital representations of the waveforms to be generated, or may use any other routine or stored data to create such waveforms. If implemented in hardware, the waveform generator 101 may take the form of, for example, an oscillator or a square wave generator. If desired, the operator may be asked to input certain parameters needed or useful in the design the waveforms, such as the approximate response time of the process, the step size of the amplitude of the waveforms to be delivered to the process inputs, etc. The operator may be prompted for this information when the MPC block 56 is first created or when the operator instructs the MPC block 56 to begin to upset or excite the process and collect process data. In a preferred embodiment, the data collection unit 100 collects (or otherwise assures the collection of) data in response to each of the excitation waveforms for three or five times the response time input by the operator to assure that a complete and accurate process model may be developed. However, data may be collected for any other amount of time.
The MPC control block 56 preferably operates until the waveform generator 101 has completed delivering all of the necessary excitation waveforms to each of the process inputs X1-X3 and the data collection unit 100 has collected data for the process outputs Y1-Y3. Of course, the operation of the MPC block 56 may be interrupted if so desired or if necessary during this data collection process.
Referring to
After collecting the process data, the operator may, at some point, decide to implement the next phase of developing the MPC block by creating one or more process models from the collected process data to be used in the MPC controller or other model based control block. Before or as part of this procedure, the operator may initiate a block 125 of
Additionally, if desired, the magnitude or amplitude of the noise could be automatically selected based on other factors in the process test, such as the magnitude of the step signal used to upset the process, the change in the process data in response to the test, etc. Thus, generally speaking, the amplitude of the noise may be automatically set as a function of the collected process data or of the process input signal. As an example only, the amplitude of the noise may be determined as a function of a statistical measure of the collected process data, such as the range of the collected process data, the mean of the collected process data or a standard deviation of the collected process data, or as a function of a process input signal such as a factor of the magnitude of the input process upset signal used to generate the collected process data. In one particular example, if the process data changes by 2% in the test cycle, the noise may have a magnitude of 0.2%, while if the magnitude of the step test signal input to the process is 5% of the possible range, the noise magnitude may be 0.5%. Of course, some other multiplier (besides 10 percent) could be used to relate the noise magnitude to other factors used in the test. Still further, it will be understood that, when determining multiple process models or when determining a process model from multiple inputs to the process and/or from multiple process outputs, the amplitude or type of noise added to the collected process data may be different for each set of collected process output data. Thus, the noise amplitude may be set differently for each different process upset signal and/or for each set of collected data pertaining to a different process output.
After noise is added to the process data by the block 125 of
If desired, the process modeling routine 44 may run a data screening procedure on the collected data. This data screening procedure may check the collected data for outliers and other obviously erroneous data and may check other values associated with the collected data, such as status and limit values associated with the collected data, to determine if the data was generated by a function block having a bad or improper status, if the data was at a limit, if the data was generated when a function block or other element was in an improper mode, or if the data was, in some other way, generated under abnormal or undesirable process conditions. For example, in the Fieldbus communication protocol, data generated by function blocks also includes a status, a limit and a mode indication which can be stored with the data in the data historian 12 and used to screen the data. If desired, the data screening routine may illustrate the collected data to the operator on the data display area 120 of
As illustrated in
The time bars or data window in the area 120 may also be used to select the data that is to be used to develop the process model. An operator may select one of the divider bars and drag it to the desired start or end time to change the time frame considered for process model identification. If part of the time between the start and end bar is not representative of normal plant operation, then the user or operator can specify this section of time to select data values to be ignored during the process model identification process. In response, the selected area may be shown in a darker background color or specified in some other manner and will automatically be excluded when creating the process model.
After screening the data and adding the random noise thereto, the process modeling routine 44 creates a process model from the selected data. As noted above, the process modeling routine 44 may perform any desired or known type of process modeling analysis to develop a process model from the collected and screened data and the developed process model may take on any form, such as a mathematical algorithm, a series of response curves, etc.
If the process modeling routine 44 has a problem determining the process model, then an indication of the problem may be reflected in a status area of a user display, such as that of
If desired, and based on the conditions that prevented a successful model being identified, the user may change the time frame over which the process modeling is performed, or change process inputs so that the data used in process modeling routine 44 is valid. The process model that is identified may be automatically saved in any desired database to be accessible for later use. More experienced users may want to examine or edit the process model that was identified. By selecting the Advanced button 124 on the screen of
At some point in the process, the logic parameter creation routine 46 may be executed to create the parameters (to be stored in the variables within the MPC block 56) needed by the generic logic 102 of the initial MPC block 56 to perform model predictive control. These control parameters, which may be, for example, matrix or other MPC coefficients for MPC logic, tuning parameters, neural network parameters (for a neural network), scaling factors (for multi-variable fuzzy logic) or any other desired parameters, are usually determined based on the generated process model. The logic parameter creation routine 46 may perform any desired or known procedure for creating the parameters from a process model. Generally speaking, this process entails inverting the process model in a matrix format. However, any other desired logic parameter creation routine could be used. Because the specifics of creating a process model from data for a process and generating MPC or other control logic parameters from that process model is known in the art, these procedures will not described further herein. It should be noted, however, that the operator may have some input on the creation of the control logic parameters for the MPC block 56. In fact, the operator may be requested or otherwise be given the ability to specify the values of certain variables typically used to create an MPC controller. For example, the operator may specify the set points and limits of each of the constrained inputs to the MPC block, the time frame over which control changes are to be made, i.e., the set point trajectory filter and the time constants associated with this filter, the maximum or minimum movement (rate limit) of an MPC output or a process output, whether any of the controlled parameters respond in an integrated manner, MPC optimization factors, variables or tuning parameters, the horizon of the MPC control block, i.e., how many steps forward calculations are to be performed to control to a desired state, the engineering unit ranges for each of the inputs and outputs of the MPC block 56, which of the manipulated variable targets will be allowed to be relaxed or not realized when one of the constraints is violated, a description and/or name of each of the MPC block inputs and outputs, the value of any optimization variables that can be set, the value of variables related to the aggressiveness or robustness of the MPC block, etc. If desired, the control logic generation routine 46 may store default values for some or all of these variables or settings and use these default values to create the MPC logic. However, the operator or other user may be able to change these settings via the user display 14.
In any event, the MPC logic parameter creation routine 46 executes using this information and any other information that may be needed to create MPC (or other) control logic parameters, such as MPC coefficients. The Generate Control button 123 on the screen display 118 may indicate whether or not the creation of a process model and control logic parameters was successful.
After the MPC control logic parameters are created, at a step 128 of
Once downloaded and executed by the controller 11, the MPC module or loop having the MPC block 56 therein may perform reporting functions in the same manner as other blocks or elements within the control routine because, as noted above, the MPC block 56 and the control module including this block are designed using the same programming paradigm as the other control blocks within the process control system 10. In one embodiment, the MPC block or module may have graphical views associated therewith that can be displayed to a user or operator via, for example, one of the display screens 14 of one or more of the workstations 13, these views subscribing to data associated with the blocks within the MPC control module and displaying this data in a predefined or specified manner.
While the method of creating a process model from collected process data that adds noise to the collected process data has been described herein as being implemented in conjunction with the creation of an MPC control block that is downloaded to a controller of a process plant during the configuration of the process plant, it should be noted that the concept of adding noise to collected process data prior to creating a process model from that data can be implemented in any other context or environment for any desired type of process model. Thus, this feature can be used in creating process models for MPC control applications, neural network modeling and/or control applications, or any other situation in which a process model needs to be created for a process from collected process data. Moreover, the feature of adding noise to the collected process data prior to creating a process model from that data may be used in single-input-single-output, or single-input-multiple-output, or multiple-input-multiple output, or multiple-input-single-output control or modeling situations or other non-control applications, such as modeling and prediction applications. Likewise, the process data to which the noise is added may be collected from the process in any manner including in any manner other than that described herein. Likewise, while the actual model developed from the collected process data pre-processed with noise may be finite impulse response (FIR) models or parametric models such as auto-regressive with external inputs (ARX) models (as described in more detail herein), any other types of process models may be created from this data instead of or in addition to these types of models.
Thus, as illustrated in
While
It has also been found that the technique of adding noise to process test data actually works well to robustly find process models in the presence of noisy process test data in the first place, in that the addition of zero-mean, random noise to noisy data does not actually increase the level of the noise in the data above the amount of noise added. In particular, because the noise being added is not correlated with the noise already within the test data as collected, the added noise does not actually increase the level of noise of the data above the level of the added noise. In fact, when added across noisy and non-noisy data, such as when developing multiple process models for the same process, the addition of noise evens out the amount of noise within the data collected from various sources within the process, thereby providing for a better or more correlated set of process models for the process.
It has also been found that the technique of adding noise to the process test data generally works better when determining a parametric model, such as an ARX model, as compared to a non-parametric model, such as an FIR model. Generally speaking, parametric models employ a finite-dimensional parameter vector in the search for a best description, while the best description in a non-parametric model requires an infinite dimensional parameter vector. The key difference between the parametric and non-parametric model types is that a parametric model is much more compact and needs fewer parameters to describe the same dynamic behavior than a non-parametric model. In the literature, FIR is called a non-parametric model while forms such as ARX, ARMAX, Box-Jenkins, and Output Error (OE), etc., are called parametric models. The term non-parametric is not meant to imply that such models completely lack parameters; rather, that the number and nature of the parameters is flexible and determines the degree of truncation. For example, in an FIR model, the number of scans used to define the model establishes the dynamic range of the model. Non-parametric models are also sometimes referred to as distribution free.
As is known, low order parametric models are not generally able to produce a good or valid estimate of the dead time of a process for use in the process model, while FIR models generally produce good estimates for process dead time. As a result, one very useful method of determining a parametric model, such as an ARX model is illustrated by the flowchart 170 of
Thereafter, at a block 178, random, zero-mean noise of a desired amplitude may be added to the process test data. At a block 180, the process test input signal may be shifted in time to account for the determined process dead time, to thereby remove the process dead time from the collected and artificially noisy process data. Of course, the order of the operations of the blocks 178 and 180 is not important and may be reversed or performed simultaneously. At a block 182, a parametric model generation routine may be used to generate a parametric process model from the artificially noisy and shifted process data by determining values for the parameters of the parametric process model in any known manner. Of course, shifting the process input data based on the determined process dead time may occur during the process of determining the parameterized process model, and could thus be an integral part of the calculations implemented in determining the process model.
In general, the process of adding noise to the collected process data increases the standard deviation of the process data, which basically enables the parametric model creation routine to converge on a set of model parameters using the noisy data in cases when the routine is unable to do so on the raw (non-noisy) data. Still further, it is believed that the addition of the noise to the process data conditions the data in a manner that enables a parametric model creation routine to converge on a set of model parameters that basically estimate the process as well or as close as model parameters that would have been determined from the raw data, but to be able to do so in many situations in which the parametric model creation software would have been unable to actually converge using the raw data.
There are several basic techniques of process model validation from which it is possible to measure the robustness of the process used to generate process models and in particular to measure the improvement in model parameter convergence. As described above, it has been found that confidence intervals strongly relate to noise and therefore that confidence intervals (which are closely related to the standard deviation of the data) can be widen by superimposing a small level noise on the test data. As noted above, this technique enables a parametric model to be achieved from data that has not before provided model parameter convergence. As a result, the robustness of the model development technique is significantly increased.
Development of a satisfactory process model is at the core of Model Predictive Control (MPC) technology. While various types of models are used with MPC, the FIR and ARX models are probably the most commonly used in industrial practice. A concise review of model types and their features is given in Zhu, Y., Arrieta, R., Butoyi, F., and Cortes, F., “Parametric Versus Nonparametric Models in MPC Process Identification,” Hydrocarbon Processing, February, 2000. As indicated above, one of the primary criteria for model evaluation is the use of confidence interval with calculations performed in the frequency or time domain and for this measurement, narrow confidence levels are desirable. However, another model identification feature, robustness, is not so clearly defined. Generally speaking, however, the model identification problem results in an optimization problem, solved by least squares techniques or maximum likelihood techniques or variations of these techniques. While many known methods deliver reliable nominal models and acceptable related uncertainties, due to the different approaches, a fair comparison of the respective robustness of the model identification procedures is difficult. In summary, however, robust identification techniques tolerate model structural errors and deliver both a model and an estimate of uncertainty, as required by the robust control design.
While there are many theoretical modeling techniques, model identification techniques used in engineering software and applied to perform identification in complex industrial processes is generally designed for easy use and therefore has less options for selecting the modeling techniques or the order of the modeling equations than typical research/academic software. Therefore, in cases in which the process dynamics are significantly more complex than the assumed model, the assumed model to be identified should have wider uncertainty intervals for the model parameters. As noted above, the model uncertainty as defined by confidence intervals is established by or is related to the random noise level in the data. Thus, in many cases, if the noise level is not sufficient to create uncertainty ranges wide enough for encompassing acceptable parameter values (which conditions often exist when identifying a process with significant non-linearity, cascaded MPC or simulated processes and when random noise level is very low or not present at all), the identification procedure may not converge to the acceptable model parameters.
Therefore, the term robust identification is used herein to encompass the procedure for providing a reliable manner of obtaining a process model for the assumed model complexity from poor and unreliable data with respect to model parameter convergence. The confidence intervals analysis is used, and as illustrated herein, the test results provide evidence that the addition of random noise improves identification robustness by increasing confidence intervals of the identified models.
To be clearer, however, the concept of confidence levels will be described in more detail below. In particular, step response modeling, proven to be effective in DMC applications, is the most common form of model representation for MPC, as step response modeling makes the prediction of process outputs available explicitly. Future prediction is used to compute the predicted error vector as an input to the MPC controller.
The actual forms of a step response model are known. Considering a single-input-single output process, the differential FIR model is:
where p is the prediction horizon and the hi are the identified model coefficients. Typically, 30 to 120 coefficients are required for an impulse response to describe the dynamics of a simple first order plus dead time process. However, identifying the step response with the full prediction horizon and as many as 120 coefficients (especially in the multiple-input-multiple-output case) causes overfitting and results in significant parameter uncertainty, a common problem for FIR identifiers. An ARX model, has significantly fewer coefficients than the FIR model and can be expressed as:
where A and V are the autoregressive and moving average orders of the ARX model, d denotes the dead time, and ai, bi are the model coefficients. An order of four has been observed to satisfy most practical applications. As noted above with respect to
Generalizing, process model identification can be presented as a mapping of the measurement data set ZN0 into a model parameter estimate set {circumflex over (θ)}N0=({circumflex over (θ)}(1), . . . , {circumflex over (θ)}(k), . . . , {circumflex over (θ)}(m)) contained into parameters set DN [4]:
ZN0→{circumflex over (θ)}N0εDN (3)
In the above FIR and ARX model representations, {circumflex over (θ)}(i) is (hi) and (ai, bi), respectively. A very important property of any identification technique is convergence of {circumflex over (θ)}N0 when number of samples N tends to infinity. Errors of data set ZN0 have random components. As a result, the set {circumflex over (θ)}N0 is not a unique realization of the true model parameter set {circumflex over (θ)}0. In fact, there are infinite possible realizations {circumflex over (θ)}N0, {circumflex over (θ)}N1, . . . , {circumflex over (θ)}N∞ of the true parameter set {circumflex over (θ)}0 developed from hypothetical data sets ZN0, ZN1, . . . , ZN∞. Therefore parameters estimate {circumflex over (θ)}Ni occurs with some probability. From a practical perspective, it is more interesting to know the probability distribution of the difference {circumflex over (θ)}Ni-{circumflex over (θ)}0 as knowing this distribution provides quantitative uncertainties of the estimate {circumflex over (θ)}Ni.
The task is therefore in estimating {circumflex over (θ)}Ni-{circumflex over (θ)}0 without knowing {circumflex over (θ)}0. It has been proven that for large N, every parameter from the estimate {circumflex over (θ)}Ni-{circumflex over (θ)}0 asymptotically converges (with confidence level α) to the normal distribution, with the density function:
As seen from the equation (4) Pθ(kk) is the variance of the parameter estimate {circumflex over (θ)}(k)-θ(k). Pθ(kk) is the k,k element of the covariance matrix Pθ. The equation for estimating the covariance matrix is:
Pθ=(ZN0 TZN0 T)−1ZN0 TeeTZN0 T((ZN0 TZN0)−1)T (5)
Here, ZN0 is the data set arranged in the same manner as used for identification (FIR or ARX in these examples); ZN0 T is transpose of ZN0; and e is set of errors between process outputs and model outputs.
However, applying equation (5) requires calculation of the process model first, in order to develop the error set. Alternatively, the covariance matrix Pθ can be defined directly from singular value decomposition (SVD) of the data matrix:
The matrices U, S, V are products of the SVD. Then,
Here, the Vji are elements of the V matrix; wi are elements of the diagonal matrix S; M is the dimension of the matrix S.
The standard deviation of the model parameters is defined as:
σ(aj)=√{square root over (var(aj))} (9)
This measure presents the model quality information in a more readily usable form than the error probability distribution provided above. Standard deviations of the model parameters establish the range of parameter value with a predefined probability. For example, a 95% confidence region means that the true parameter value lies in the region with a 95% probability. With the assumption of normal distribution of errors, the range of 2σ(aj) around the identified parameter value defines the 95% confidence interval, the range of 3σ gives the 99% confidence interval, and so on.
From these parameter standard deviations σ(aj), it is possible to generate step responses in a similar way as from model parameters. The confidence regions are obtained over the prediction horizon, thus giving the range of response parameters such as gain and dead time. The 95% confidence interval boundaries are defined by the twice the standard deviation, and the comparison may be made by computing the step response and superimposing it on the original step response in both positive and negative directions. For 99% confidence intervals, three times the standard deviation is used to define the upper and lower confidence intervals.
An example of confidence intervals for a step response developed in Matlab from simulated data by applying SVD is shown in
Having described the manner of defining the confidence levels,
The effect of adding random noise to the process data is very clearly demonstrated in a simulation test, in which adding 0.25 percent amplitude noise to the data makes it possible to develop a good model when a model was not achievable at all with noiseless data. For example,
In validating the robust model generation concept described herein, it was discovered that the sensitivity to error in the dead time estimates generally decreases with noise amplitude. A couple of specific tests illustrating the effects of adding noise will now be described below. In particular, these tests used a single loop process defined as a second order process with Gain=1, DT=2, T1=T2=20 (where DT is the dead time, and T1 and T2 are the first and second order time constants of the parametric model). In these tests, a time to steady state Tss of 240 was used during model identification. The data used in the test is shown in the selection area 220 between 9:21-9:52 i.e., 31 minutes of data of
However, upon adding artificial noise to process data after the process upset test, significant improvements to model quality were observed. In fact the results of adding 0.3%, 0.4% and 0.5% (maximum amplitude) evenly distributed, zero-mean ransom noise to the data are indicated in
Still further, it was determined that noise could be added to the process inputs instead of to the data collected by the process upset test. In particular, significant improvement in parametric model identification was determined when a test cycle was run with noise added to the output of the signal generator that was used to upset the process to perform the process test.
Likewise, it was determined that adding 0.4% maximum amplitude, evenly distributed, zero-mean, random noise to process data that already included 0.4% real noise produces an almost identical result with respect to model identification. Still further, it was generally determined that significant amounts of process data can be excluded from use in creating the model, when noise is added to the remaining data, and still be able to produce adequate models. In particular, the ARX model generation routine performed as expected regardless of where missing data was located and, while the FIR model generation routine broke down first, it still was able to produce models in the presence of some missing data. The left hand plot of
Similar tests were performed on multivariable processes with the same general conclusions, i.e., that better model identification performance was obtained by adding zero-mean, random noise to the process test data, that the sensitivity to error in the dead time estimates decreased with noise amplitude, that process gain estimates were generally better (with FIR model generation generally producing better gain estimates than ARX model generation), and that a significant amount of process data can be excluded from the test, including data within the middle of the data set, and still be able to generate a process model (with ARX model generation being more tolerant to missing data than FIR model generation). Still further, it is noted that while the technique of adding noise to the test data did not significantly improve the developed FIR models and, depending on the amount of noise added, may have made these models slightly worse, it did not significantly reduce the accuracy of the FIR models until the data set used to create the model was severely limited. However, it was found that adding random noise to the test data significantly increased the ability of the ARX model determination routine to converge and thereby determine a complete set of model parameters, thus making this process model creation routine more robust.
Thus, as described above, confidence intervals strongly relate to the noise. Therefore, confidence intervals can be easily widened by superimposing a small level of random noise on the test data. The observation leads to a technique for improving model parameters convergence by widening confidence intervals and leads to a technique that is able to achieve a model from data that has not before provided model parameters convergence, and to do so with widened confidence intervals. As a result, the robustness of the process model development has been significantly increased.
As will be understood, the MPC or advanced control logic generation routines and methods described herein enable a user to create advanced control blocks such as MPC control blocks, neural network modeling or control blocks, etc. without having a great deal of expert knowledge about how those blocks are created and enables an operator to create and use an advanced control block without performing a lot of reprogramming of the process to implement advanced control and without generally needing to alter the process test setup to determine an adequate process model.
While the advanced control blocks, the process simulation blocks and the associated generation and testing routines have been described herein as being used in conjunction with Fieldbus and standard 4-20 ma devices, they can, of course, be implemented using any other process control communication protocol or programming environment and may be used with any other types of devices, function blocks or controllers. Moreover, it is noted that the use of the expression “function block” herein is not limited to what the Fieldbus protocol or the DeltaV controller protocol identifies as a function block but, instead, includes any other type of block, program, hardware, firmware, etc., associated with any type of control system and/or communication protocol that can be used to implement some process control function. Also, while function blocks typically take the form of objects within an object oriented programming environment, this need not be case.
Although the advanced control blocks, process model creation routines, the process simulation blocks and the associated generation and testing routines described herein are preferably implemented in software, they may be implemented in hardware, firmware, etc., and may be executed by any other processor associated with a process control system. Thus, the routine 40 described herein may be implemented in a standard multi-purpose CPU or on specifically designed hardware or firmware such as, for example, ASICs, if so desired. When implemented in software, the software may be stored in any computer readable memory such as on a magnetic disk, a laser disk, an optical disk, or other storage medium, in a RAM or ROM of a computer or processor, etc. Likewise, this software may be delivered to a user or to a process control system via any known or desired delivery method including, for example, on a computer readable disk or other transportable computer storage mechanism or modulated over a communication channel such as a telephone line, the internet, etc. (which is viewed as being the same as or interchangeable with providing such software via a transportable storage medium).
Thus, while the present invention has been described with reference to specific examples, which are intended to be illustrative only and not to be limiting of the invention, it will be apparent to those of ordinary skill in the art that changes, additions or deletions may be made to the disclosed embodiments without departing from the spirit and scope of the invention.
Claims
1. A method of generating a process model for a process, comprising:
- collecting process data indicative of process operation from the process;
- adding noise to the process data to produce conditioned process data; and
- determining a process model from the conditioned process data.
2. The method of claim 1, wherein collecting process data includes upsetting the process using a known process upset signal and collecting process data indicative of a process response to the process upset signal.
3. The method of claim 2, wherein adding noise to the process data comprises adding noise to a process output signal which is indicative of the process response to the process upset signal.
4. The method of claim 2, wherein adding noise to the process data comprises adding noise to the process upset signal prior to upsetting the process using the process upset signal to thereby add noise to data being collected as the collected process data.
5. The method of claim 1, wherein determining the process model includes determining one or more parameters of a parametric process model.
6. The method of claim 5, wherein determining the process model includes determining one or more parameters of an auto-regressive with external inputs process model.
7. The method of claim 1, wherein determining a process model includes determining a non-parametric process model.
8. The method of claim 7, wherein determining the process model includes determining a finite impulse response process model.
9. The method of claim 1, wherein adding noise to the process data to produce the conditioned process data includes adding random noise to the process data.
10. The method of claim 9, wherein adding random noise to the process data includes adding zero-mean noise to the process data.
11. The method of claim 10, wherein adding random noise to the process data includes adding evenly distributed random noise with a maximum amplitude between 0.2 and 0.5 percent of the range of the collected process data.
12. The method of claim 10, wherein adding random noise to the process data includes adding evenly distributed random noise with a maximum amplitude of approximately 0.4 percent of the range of the collected process data.
13. The method of claim 1, wherein determining the process model from the conditioned process data includes estimating a process dead time for the process from the collected process data, and using the dead time and the conditioned process data to determine the process model.
14. The method of claim 13, wherein estimating the process dead time includes generating a further process model from the collected process data and determining an estimate of the process dead time from the further process model.
15. The method of claim 14, wherein generating the further process model includes generating a finite impulse response model.
16. The method of claim 1, further including screening the collected process data or the conditioned process data prior to generating the process model from the conditioned process data.
17. The method of claim 1, wherein adding noise to the process data includes determining an amplitude of the noise as a function of the collected process data.
18. The method of claim 17, wherein determining an amplitude of the noise includes determining an amplitude of the noise as a function of the range of the collected process data, a mean of the collected process data or a standard deviation of the collected process data.
19. The method of claim 1, wherein adding noise to the process data includes determining an amplitude of the noise as a function of a process input signal used to generate the process data indicative of process operation.
20. A model generation system for generating a process model from a process in a process environment including one or more processors and a computer readable memory, the model generation system comprising:
- a first routine stored on the computer readable memory and adapted to be executed on at least one of the one or more of the processors to collect from the process, process data indicative of process operation for at least a portion of the process;
- a second routine stored in the computer readable memory and adapted to be executed on at least one of the one or more of the processors to add noise to the process data to produce conditioned process data; and
- a model generation routine stored in the computer readable memory and adapted to be executed on at least one of the one or more of the processors to determine a process model from the conditioned process data.
21. The model generation system of claim 20, wherein the model generation routine is a parametric model generation routine that generates a parametric model by determining one or more parametric model parameters from the conditioned process data.
22. The model generation system of claim 21, wherein the model generation routine is an auto-regressive with external inputs process model generation routine.
23. The model generation system of claim 21, wherein the model generation routine includes a process parameter routine that estimates a dead time of the process and a model parameter estimation routine that determines the one or more parametric model parameters from the conditioned process data and the estimate of the process dead time.
24. The model generation system of claim 23, wherein the process parameter routine produces a non-parametric model for the process and determines the process dead time from the non-parametric model.
25. The model generation system of claim 24, wherein the process parameter routine produces a finite impulse response model as the non-parametric model.
26. The model generation system of claim 20, further including a third routine stored on a computer readable memory and adapted to be executed on at least one of the one or more of the processors to produce a process controller using the process model.
27. The model generation system of claim 26, wherein the process controller is a model predictive control based controller.
28. The model generation system of claim 20, wherein the first routine includes a signal generator that produces a known process upset signal to upset the process and a collection routine that collects process data indicative of a process response to the process upset signal.
29. The model generation system of claim 28, wherein the second routine is adapted to add noise to the process data by adding noise to the process upset signal so that the collected process data indicative of the process response is the conditioned process data.
30. The model generation system of claim 29, wherein the second routine is adapted to add zero-mean, random noise to the process upset signal.
31. The model generation system of claim 30, wherein the second routine is adapted to enable a user to select a magnitude associated with the zero-mean, random noise to be added to the process upset signal.
32. The model generation system of claim 20, wherein the second routine is adapted to add zero-mean, random noise to the process data.
33. The model generation system of claim 32, wherein the second routine is adapted to enable a user to select a magnitude associated with the zero-mean, random noise to be added to the process data.
34. The model generation system of claim 32, wherein the second routine is adapted to add evenly distributed random noise with a maximum amplitude between 0.2 and 0.5 percent of the range of the process data.
35. The model generation system of claim 32, wherein the second routine is adapted to add evenly distributed random noise with a maximum amplitude of approximately 0.4 percent of the range of the process data.
36. The model generation system of claim 20, wherein the second routine determines an amplitude of the noise added to the process data as a function of the process data.
37. The model generation system of claim 36, wherein the second routine determines the amplitude of the noise as a function of a range or a mean or a standard deviation of the process data.
38. The model generation system of claim 20, wherein the second routine determines an amplitude of the noise added to the process data as a function of a process input signal used to generate the process data.
39. A method of generating a control or simulation block for controlling or simulating at least a portion of a process, comprising:
- delivering a known process upset signal to the process to cause the process to undergo a change;
- collecting from the process, process data indicative of a response to the process upset signal;
- adding noise to the process data to produce conditioned process data;
- determining a process model from the conditioned process data; and
- generating the control or simulation block using the determined process model.
40. The method of claim 39, wherein adding noise to the process data comprises adding noise to the process upset signal prior to delivering the process upset signal to the process to thereby add noise to collected process data.
41. The method of claim 39, wherein determining the process model includes determining one or more parameters of a parametric process model.
42. The method of claim 41, wherein determining the process model includes determining one or more parameters of an auto-regressive with external inputs process model.
43. The method of claim 39, wherein determining the process model includes determining a non-parametric process model.
44. The method of claim 39, wherein adding noise to the process data to produce conditioned process data includes adding random noise to the process data.
45. The method of claim 44, wherein adding random noise to the process data includes adding zero-mean noise to the process data.
46. The method of claim 45, wherein adding noise to the process data includes adding evenly distributed random noise with a maximum amplitude between 0.2 percent and 0.5 percent of the range of the process data.
47. The method of claim 45, wherein adding noise to the process data includes adding evenly distributed random noise with a maximum amplitude of approximately 0.4 percent of the range of the process data.
48. The method of claim 39, wherein determining the process model from the conditioned process data includes estimating a process dead time for the process from the process data, and using the estimated dead time and the conditioned process data to determine the process model.
49. The method of claim 48, wherein estimating the process dead time includes generating a further process model from the process data and determining an estimate of the process dead time from the further process model.
50. The method of claim 39, further including screening the process data or the conditioned process data prior to generating the process model from the conditioned process data.
51. The method of claim 39, wherein generating the control or simulation block using the determined process model includes generating a model predictive control block.
52. The method of claim 51, wherein generating the model predictive control block includes generating a multiple-input-multiple-output controller.
53. The method of claim 39, wherein generating the control or simulation block using the determined process model includes generating single-input-single-output control block.
54. The method of claim 39, wherein determining a process model from the conditioned process data includes determining a single-input-single-output process model.
55. The method of claim 39, further including screening the process data or the conditioned process data prior to generating the process model from the conditioned process data.
56. The method of claim 39, wherein adding noise to the process data includes determining an amplitude of the noise as a function of the process data.
57. The method of claim 56, wherein determining an amplitude of the noise includes determining an amplitude of the noise as a function of the range of the process data, a mean of the process data or a standard deviation of the process data.
58. The method of claim 39, wherein adding noise to the process data includes determining an amplitude of the noise as a function of a process upset signal.
Type: Application
Filed: Apr 13, 2006
Publication Date: Oct 18, 2007
Patent Grant number: 7840287
Applicant: FISHER-ROSEMOUNT SYSTEMS, INC. (Austin, TX)
Inventors: Wilhelm Wojsznis (Austin, TX), Ashish Mehta (Austin, TX), Dirk Thiele (Austin, TX)
Application Number: 11/403,361
International Classification: G05B 13/02 (20060101);